2019
DOI: 10.1016/j.cor.2018.11.013
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Designing a sustainable supply chain network integrated with vehicle routing: A comparison of hybrid swarm intelligence metaheuristics

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Cited by 107 publications
(60 citation statements)
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“…Related to SI, today is straightforward to find hybridization of SI meta-heuristic schemes with separated local improvement and individual learning mechanisms in the literature. Some examples of this research trend can be found in [34][35][36][37][38].…”
Section: Brief History Of Swarm Intelligencementioning
confidence: 96%
“…Related to SI, today is straightforward to find hybridization of SI meta-heuristic schemes with separated local improvement and individual learning mechanisms in the literature. Some examples of this research trend can be found in [34][35][36][37][38].…”
Section: Brief History Of Swarm Intelligencementioning
confidence: 96%
“…To address this dilemma, researchers traditionally deploy a metaheuristic procedure, which covers the use of swarmbased algorithms adopted by researchers to deal with various optimization problems. Govindan et al (2019), for example, developed a hybrid swarm-based algorithm using PSO, the electromagnetism-like mechanism algorithm, and artificial bee colony to optimize a biobjective sustainable distribution network. Yamada and Zukhruf (2015) proposed a new variant of PSO to deal with the multimodal supply chain transport supernetwork equilibrium problem.…”
Section: Solution Techniquesmentioning
confidence: 99%
“…Due to the rapid advance of technology and communication, these algorithms have drawn widespread attention and have been successfully applied to many real-world problems [32]. The machine learning approach can be applied to different optimization problems ranging from wind energy decision system [33], socially aware cognitive radio handovers [34], and truck scheduling at cross-docking terminals [35,36] to the sustainable supply chain network integrated with vehicle routing [37]. These studies proved that machine learning can adapt the environmental changes, creating its own knowledge base and adjusting its functionality to make dynamic data and network handover decisions.…”
Section: Image Classification Based On Multi-kernel Learningmentioning
confidence: 99%